2016
DOI: 10.1007/s10479-016-2280-7
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Big data in humanitarian supply chain networks: a resource dependence perspective

Abstract: Humanitarian operations in developing world settings present a particularly rich opportunity for examining the use of big data analytics. Focal non-governmental organizations (NGOs) often synchronize the delivery of services in a supply chain fashion by aligning recipient community needs with resources from various stakeholders (nodes). In this research, we develop a resource dependence model connecting big data analytics to superior humanitarian outcomes by means of a case study (qualitative) of twelve humani… Show more

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Cited by 96 publications
(71 citation statements)
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“…Commonly, one distinguishes situational awareness data from programmatic data such as background information on demographics or culture (Prasad et al 2018). We here focus on the first category, which covers information about the latest conditions, needs, and locations of vulnerable populations.…”
Section: The Need For Improved Situational Awarenessmentioning
confidence: 99%
“…Commonly, one distinguishes situational awareness data from programmatic data such as background information on demographics or culture (Prasad et al 2018). We here focus on the first category, which covers information about the latest conditions, needs, and locations of vulnerable populations.…”
Section: The Need For Improved Situational Awarenessmentioning
confidence: 99%
“…Hazen, Skipper, Boone, and Hill (2018) provided examples of applications of big data analytics for descriptive, predictive, and prescriptive analytics methods. Prasad, Zakaria, and Altay (2018) identified how the various types of big data attributes (volume, velocity, veracity, value, and variety) affect outcomes, lead‐times, costs, and dissemination. Sanders (2014) described how companies like Walmart, UPS, and Amazon have utilized big data analytics to enhance their supply chain operations.…”
Section: Need For Analytics and Data Science Professionalsmentioning
confidence: 99%
“…Obviously, there has been considerable interest in the former one to date. However, there are a lot of practical problems such as knowledge fusion, knowledge sharing and so on (Gupta, Altay, & Luo, 2017;Hwang, Lin, & Shin, 2018;Prasad, Zakaria, & Altay, 2016;Wamba, Edwards, & Akter, 2017;Wang, Huang, Davison, & Yang, 2018). Although the first kind of technology can inform us of how to represent knowledge, it is far from enough to know what will be needed before the stage of knowledge representation.…”
Section: Introductionmentioning
confidence: 99%